Biblio

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2023-07-14
Rui, Li, Liu, Jun, Lu, Miaoxia.  2022.  Security Authentication Scheme for Low Earth Orbit Satellites Based on Spatial Channel Characteristics. 2022 IEEE 8th International Conference on Computer and Communications (ICCC). :396–400.
Security authentication can effectively solve the problem of access to Low Earth Orbit (LEO) satellites. However, the existing solutions still harbor some problems in the computational complexity of satellite authentication, flexible networking, resistance to brute force attacks and other aspects. So, a security authentication scheme for LEO satellites that integrates spatial channel characteristics is designed within the software defined network architecture. In this scheme, the spatial channel characteristics are introduced to the subsequent lightweight encryption algorithm to achieve effective defense against brute force attacks. According to security analysis and simulation results, the scheme can effectively reduce the computational overhead while protecting against replay attacks, brute force attacks, DOS attacks, and other known attacks.
2022-03-01
Chen, Shuyu, Li, Wei, Liu, Jun, Jin, Haoyu, Yin, Xuehui.  2021.  Network Intrusion Detection Based on Subspace Clustering and BP Neural Network. 2021 8th IEEE International Conference on Cyber Security and Cloud Computing (CSCloud)/2021 7th IEEE International Conference on Edge Computing and Scalable Cloud (EdgeCom). :65–70.
This paper proposes a novel network intrusion detection algorithm based on the combination of Subspace Clustering (SSC) and BP neural network. Firstly, we perform a subspace clustering algorithm on the network data set to obtain different subspaces. Secondly, BP neural network intrusion detection is carried out on the data in different subspaces, and calculate the prediction error value. By comparing with the pre-set accuracy, the threshold is constantly updated to improve the ability to identify network attacks. By comparing with K-means, DBSCAN, SSC-EA and k-KNN intrusion detection model, the SSC-BP neural network model can detect the most attacked networks with the lowest false detection rate.
2022-03-22
Xu, Ben, Liu, Jun.  2021.  False Data Detection Based On LSTM Network In Smart Grid. 2021 4th International Conference on Advanced Electronic Materials, Computers and Software Engineering (AEMCSE). :314—317.
In contrast to traditional grids, smart grids can help utilities save energy, thereby reducing operating costs. In the smart grid, the quality of monitoring and control can be fully improved by combining computing and intelligent communication knowledge. However, this will expose the system to FDI attacks, and the system is vulnerable to intrusion. Therefore, it is very important to detect such erroneous data injection attacks and provide an algorithm to protect the system from such attacks. In this paper, a FDI detection method based on LSTM has been proposed, which is validated by the simulation on the ieee-14 bus platform.
2017-09-27
Jiang, Zhenfeng, Ma, Yanming, Chen, Jiali, Wang, Zigeng, Peng, Zheng, Liu, Jun, Han, Guitao.  2016.  Towards Multi-functional Light-weight Long-term Real-time Coastal Ocean Observation System. Proceedings of the 11th ACM International Conference on Underwater Networks & Systems. :31:1–31:2.
The Earth is a water planet. The ocean is used for nature resource exploitation, fishery, etc., and it also plays critical roles in global climate regulation and transportation. Consequently, it is extremely important to keep track of its condition. And thus ocean observation systems have received increasing attentions.
Li, Guannan, Liu, Jun, Wang, Xue, Xu, Hongli, Cui, Jun-Hong.  2016.  A Simulator for Swarm AUVs Acoustic Communication Networking. Proceedings of the 11th ACM International Conference on Underwater Networks & Systems. :42:1–42:2.

This paper presents a simulator for swarm operations designed to verify algorithms for a swarm of autonomous underwater robots (AUVs), specifically for constructing an underwater communication network with AUVs carrying acoustic communication devices. This simulator consists of three nodes: a virtual vehicle node (VV), a virtual environment node (VE), and a visual showing node (VS). The modular design treats AUV models as a combination of virtual equipment. An expert acoustic communication simulator is embedded in this simulator, to simulate scenarios with dynamic acoustic communication nodes. The several simulations we have performed demonstrate that this simulator is easy to use and can be further improved.